Du Ming, Nashed Youssef S G, Kandel Saugat, Gürsoy Doğa, Jacobsen Chris
Department of Materials Science, Northwestern University, Evanston, IL 60208, USA.
Mathematics and Computer Science Division, Argonne National Laboratory, Lemont, IL 60439, USA.
Sci Adv. 2020 Mar 27;6(13):eaay3700. doi: 10.1126/sciadv.aay3700. eCollection 2020 Mar.
Conventional tomographic reconstruction algorithms assume that one has obtained pure projection images, involving no within-specimen diffraction effects nor multiple scattering. Advances in x-ray nanotomography are leading toward the violation of these assumptions, by combining the high penetration power of x-rays, which enables thick specimens to be imaged, with improved spatial resolution that decreases the depth of focus of the imaging system. We describe a reconstruction method where multiple scattering and diffraction effects in thick samples are modeled by multislice propagation and the 3D object function is retrieved through iterative optimization. We show that the same proposed method works for both full-field microscopy and for coherent scanning techniques like ptychography. Our implementation uses the optimization toolbox and the automatic differentiation capability of the open-source deep learning package TensorFlow, demonstrating a straightforward way to solve optimization problems in computational imaging with flexibility and portability.
传统的断层扫描重建算法假定已获得纯投影图像,不涉及样本内部的衍射效应和多重散射。X射线纳米断层扫描技术的进展正朝着违背这些假设的方向发展,这是通过将X射线的高穿透能力(使厚样本成像成为可能)与提高的空间分辨率(减小成像系统的焦深)相结合来实现的。我们描述了一种重建方法,其中厚样本中的多重散射和衍射效应通过多层传播进行建模,并且通过迭代优化来检索三维物体函数。我们表明,所提出的相同方法适用于全场显微镜以及像叠层成像术这样的相干扫描技术。我们的实现使用了优化工具箱和开源深度学习软件包TensorFlow的自动微分功能,展示了一种灵活且便携地解决计算成像中优化问题的直接方法。